Abstract

Hyperspectral images (HSIs) possess non-negative properties for both hyperspectral signatures and abundance coefficients, which can be naturally modeled using cone-based representation. However, in hyperspectral target detection, cone-based methods are barely studied. In this paper, we propose a new regularized cone-based representation approach to hyperspectral target detection, as well as its two working models by incorporating into the cone representation l2-norm and l1-norm regularizations, respectively. We call the new approach the matched shrunken cone detector (MSCD). Also important, we provide principled derivations of the proposed MSCD from the Bayesian perspective: we show that MSCD can be derived by assuming a multivariate half-Gaussian distribution or a multivariate half-Laplace distribution as the prior distribution of the coefficients of the models. In the experimental studies, we compare the proposed MSCD with the subspace methods and the sparse representation-based methods for HSI target detection. Two real hyperspectral data sets are used for evaluating the detection performances on sub-pixel targets and full-pixel targets, respectively. Results show that the proposed MSCD can outperform other methods in both cases, demonstrating the competitiveness of the regularized cone-based representation.

Highlights

  • W ITH the help of remote sensors, hyperspectral imaging has become an important scientific tool for various fields of real-world applications

  • matched shrunken cone detector (MSCD)-l2 performs significantly better than matched shrunken cone detector with l1-norm regularisation (MSCD-l1), which implies that the l2-norm regularised cone representation is more effective than the l1-norm regularised cone representation for detecting the targets in the Hymap dataset

  • We can observe that the proposed MSCD-l1 and matched shrunken cone detector with l2-norm regularisation (MSCD-l2) both outperform matched cone detector (MCD), which indicates the benefit of incorporating the l1-norm and l2-norm regularisations into the cone-based representation for hyperspectral images (HSIs) target detection

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Summary

Introduction

W ITH the help of remote sensors, hyperspectral imaging has become an important scientific tool for various fields of real-world applications. In the analysis of hyperspectral images (HSIs), target detection is a major task, which aims to detect small objects or anomalies in an hyperspectral image. Typical target detection applications include military defence, agricultural management and mineral detection. Manuscript received January 1, 2017; revised June 6, 2017 and July 18, 2017; accepted August 10, 2017. Date of publication August 16, 2017; date of current version September 1, 2017. The associate editor coordinating the review of this manuscript and approving it for publication was Prof.

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